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比较 ARIMA、ETS、NNAR、TBATS 和混合模型,以预测意大利第二波 COVID-19 住院人数。

Comparison of ARIMA, ETS, NNAR, TBATS and hybrid models to forecast the second wave of COVID-19 hospitalizations in Italy.

机构信息

Department of Management, Economics and Quantitative Methods, University of Bergamo, via dei Caniana 2, 24127, Bergamo, Italy.

出版信息

Eur J Health Econ. 2022 Aug;23(6):917-940. doi: 10.1007/s10198-021-01347-4. Epub 2021 Aug 4.

Abstract

The coronavirus disease (COVID-19) is a severe, ongoing, novel pandemic that emerged in Wuhan, China, in December 2019. As of January 21, 2021, the virus had infected approximately 100 million people, causing over 2 million deaths. This article analyzed several time series forecasting methods to predict the spread of COVID-19 during the pandemic's second wave in Italy (the period after October 13, 2020). The autoregressive moving average (ARIMA) model, innovations state space models for exponential smoothing (ETS), the neural network autoregression (NNAR) model, the trigonometric exponential smoothing state space model with Box-Cox transformation, ARMA errors, and trend and seasonal components (TBATS), and all of their feasible hybrid combinations were employed to forecast the number of patients hospitalized with mild symptoms and the number of patients hospitalized in the intensive care units (ICU). The data for the period February 21, 2020-October 13, 2020 were extracted from the website of the Italian Ministry of Health ( www.salute.gov.it ). The results showed that (i) hybrid models were better at capturing the linear, nonlinear, and seasonal pandemic patterns, significantly outperforming the respective single models for both time series, and (ii) the numbers of COVID-19-related hospitalizations of patients with mild symptoms and in the ICU were projected to increase rapidly from October 2020 to mid-November 2020. According to the estimations, the necessary ordinary and intensive care beds were expected to double in 10 days and to triple in approximately 20 days. These predictions were consistent with the observed trend, demonstrating that hybrid models may facilitate public health authorities' decision-making, especially in the short-term.

摘要

新型冠状病毒病(COVID-19)是一种严重的、持续的、新型的大流行疾病,于 2019 年 12 月在中国武汉出现。截至 2021 年 1 月 21 日,该病毒已感染约 1 亿人,导致超过 200 万人死亡。本文分析了几种时间序列预测方法,以预测 COVID-19 在意大利第二波大流行期间(2020 年 10 月 13 日后)的传播情况。自回归移动平均(ARIMA)模型、指数平滑创新状态空间模型(ETS)、神经网络自回归(NNAR)模型、带 Box-Cox 变换的三角函数指数平滑状态空间模型、ARMA 误差以及趋势和季节性分量(TBATS),及其所有可行的混合组合,均被用于预测轻度症状住院患者数量和重症监护病房(ICU)住院患者数量。2020 年 2 月 21 日至 2020 年 10 月 13 日期间的数据取自意大利卫生部网站(www.salute.gov.it)。结果表明:(i)混合模型更擅长捕捉线性、非线性和季节性大流行模式,对两个时间序列的单一模型均有显著改进;(ii)COVID-19 轻度症状住院患者和 ICU 住院患者数量预计将从 2020 年 10 月迅速增加至 11 月中旬。根据预测,普通和重症监护病床数量预计将在 10 天内翻一番,大约 20 天后翻两番。这些预测与观察到的趋势一致,表明混合模型可能有助于公共卫生当局做出决策,尤其是短期决策。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c0e6/9304063/a662ef85ec58/10198_2021_1347_Fig1_HTML.jpg

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